NAIS: Neural Architecture and Implementation Search and its Applications in Autonomous Driving

2019 IEEE/ACM International Conference on Computer-Aided Design (ICCAD)(2019)

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摘要
The rapidly growing demands for powerful AI algorithms in many application domains have motivated massive investment in both high-quality deep neural network (DNN) models and high-efficiency implementations. In this position paper, we argue that a simultaneous DNN/implementation co-design methodology, named Neural Architecture and Implementation Search (NAIS), deserves more research attention to boost the development productivity and efficiency of both DNN models and implementation optimization. We propose a stylized design methodology that can drastically cut down the search cost while preserving the quality of the end solution. As an illustration, we discuss this DNN/implementation methodology in the context of both FPGAs and GPUs. We take autonomous driving as a key use case as it is one of the most demanding areas for high quality AI algorithms and accelerators. We discuss how such a co-design methodology can impact the autonomous driving industry significantly. We identify several research opportunities in this exciting domain.
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关键词
high-quality deep neural network models,high-efficiency implementations,NAIS,DNN models,implementation optimization,stylized design methodology,autonomous driving industry,AI algorithms,FPGA,GPU,neural architecture and implementation search
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